Hi there,
I am trying to create a new variable which contains the row mean of diff_d* but only for the instances where the values are larger than 0.
So for example respondent 132 has a positive value for 6 out of the 7 variables. So the new variable should be the average of those 6 positive values.
Any thoughts on how to approach this?
Thanks in advance!
I am trying to create a new variable which contains the row mean of diff_d* but only for the instances where the values are larger than 0.
So for example respondent 132 has a positive value for 6 out of the 7 variables. So the new variable should be the average of those 6 positive values.
Any thoughts on how to approach this?
Thanks in advance!
Code:
* Example generated by -dataex-. For more info, type help dataex clear input int id_3 float(diff_d4_1 diff_d5_1 diff_d6_1 diff_d7_1 diff_d8_1 diff_d9_1 diff_d11_1 TI_Count) 132 .7999878 .6000366 1 1 -.7000122 1.7999878 .1999817 12 133 .7999878 .6000366 1 1 -.7000122 1.7999878 .1999817 12 135 .7999878 .6000366 1 1 -.7000122 1.7999878 .1999817 12 134 .53497314 .3082275 .6960449 .7250671 -.9018555 1.5253906 -.07955933 7 115 .1822815 -.17214966 .25872803 .3822937 -1.1632996 1.1822815 -.4177551 5 121 .3167419 -.0040283203 .4201355 .51678467 -1.0624084 1.316742 -.28323364 5 129 -.3000183 .09997559 0 -.2999878 -1.600006 .5 -1.1999817 3 137 -.3000183 .09997559 0 -.2999878 -1.600006 .5 -1.1999817 3 141 -.3000183 .09997559 0 -.2999878 -1.600006 .5 -1.1999817 3 136 -.5588074 -.4750977 -.4025574 -.5012512 -1.772522 .2987366 -1.3724976 2 78 -1.0753479 .22250366 -.3873596 -.7390747 -2.2457886 -.6586304 -1.2621765 1 79 -.6914368 -.29144287 -.4473267 -.7100525 -1.954132 -.021881104 -1.5168457 1 138 -.6966858 -.591156 -.6146545 -.813446 -1.8184814 .04794312 -1.7104187 1 1 -3.7263184 -3.8315735 -3.9263306 -3.694733 -3.2631226 -3.800018 -3.668396 0 2 -3 -2.800018 -3.199982 -3.199982 -3.5 -4.0999756 -3 0 3 -3.0441895 -2.7779236 -3.2220764 -3.177887 -3.522095 -4.011566 -3 0 4 -3.132782 -2.733612 -3.266388 -3.1335754 -3.566406 -3.834381 -3 0 5 -3.883423 -3.8708496 -4.0834045 -3.8125305 -3.341705 -3.800018 -3.62912 0 6 -3.6180725 -3.8045044 -3.818054 -3.613556 -3.2089844 -3.800018 -3.695465 0 7 -3.645325 -3.656372 -3.8453064 -3.643097 -3.332031 -3.854675 -3.5336914 0 8 -3.3176575 -2.9923096 -3.467621 -3.302124 -3.526184 -3.833649 -3.133484 0 9 -3.568939 -3.953552 -3.645935 -3.4844055 -3.015289 -2.276764 -3.8844604 0 10 -3.652069 -3.9436035 -3.5834656 -3.344055 -3.099945 -2.0940857 -3.750824 0 11 -1.7000122 -2.2000122 -2.0999756 -2.1000366 -2.4000244 -1.0999756 -3 0 12 -3.0921936 -3.622833 -3.561981 -3.608551 -3.360382 -2.659332 -3.872406 0 13 -3.570007 -4.0786133 -3.874634 -3.866699 -2.9428406 -2.877838 -4.1515503 0 14 -1.9604187 -2.483368 -2.3546448 -2.341339 -2.482239 -1.3354797 -3.143738 0 15 -1.6348267 -2.2381592 -1.8131104 -1.4888306 -2.3667908 -.59054565 -2.247589 0 16 -3.5 -4 -4 -4.0999756 -3.9000244 -3.200012 -4.100006 0 17 -4.941162 -4.7384033 -4.4055176 -4.10553 -3.401398 -2.537018 -4.23703 0 18 -4.926117 -4.7456055 -4.427704 -4.190613 -3.338135 -2.772034 -4.287842 0 19 -3.572388 -4.0336914 -3.804016 -3.799042 -2.859436 -2.801361 -4.119751 0 20 -3.4020996 -3.9020996 -3.8966675 -3.991211 -3.818451 -3.085785 -4.0401917 0 21 -1.6695862 -2.1500244 -2.0543213 -2.060913 -2.3826294 -1.0651855 -2.9608765 0 22 -1.751831 -2.2518616 -2.1546936 -2.1576233 -2.443207 -1.160492 -3.031677 0 23 -2.1664429 -2.666443 -2.592346 -2.6182556 -2.788727 -1.644165 -3.285065 0 24 -4.2810974 -4.663391 -4.556427 -4.480133 -3.860657 -4.0715637 -4.2588196 0 25 -3.500336 -4.000458 -4.000458 -4.100342 -3.900116 -3.20047 -4.1002197 0 26 -3.531891 -4.0269775 -4.029419 -4.12204 -3.919617 -3.22699 -4.107361 0 27 -3.500336 -4.0004272 -4.0004272 -4.1003113 -3.900116 -3.2004395 -4.100189 0 28 -2.1604004 -1.9888 -2.2227478 -2.3556519 -3.140015 -1.8549805 -2.8062744 0 29 -2.857086 -2.831116 -3.064911 -3.1648865 -3.666229 -2.673981 -3.3986816 0 30 -3.5 -4 -4 -4.0999756 -3.9000244 -3.200012 -4.100006 0 31 -3.5 -4 -4 -4.0999756 -3.9000244 -3.200012 -4.100006 0 32 -2.399994 -2 -2.4000244 -2.5 -3.5 -2.2999878 -2.9000244 0 33 -2.944519 -2.990051 -3.192047 -3.292023 -3.6980286 -2.745514 -3.4940186 0 34 -2.542114 -2.1687317 -2.5598755 -2.63324 -3.562164 -2.4332275 -2.971069 0 35 -3.291962 -3.579651 -3.6743774 -3.764374 -3.835266 -3.031006 -3.835785 0 36 -3.8861694 -3.858978 -4.1118164 -3.984192 -4.1937256 -3.613739 -3.751343 0 37 -4.016968 -3.919739 -4.214142 -3.9140625 -3.4141235 -3.800018 -3.611267 0 38 -4.416687 -4.38562 -4.546814 -4.2481384 -3.7579346 -3.799866 -3.878815 0 39 -4.2673035 -4.211853 -4.42276 -4.178192 -4.0663757 -3.800018 -3.833618 0 40 -3.865814 -3.740692 -4.0490723 -3.8742065 -4.141327 -3.674194 -3.6328735 0 41 -4.172699 -4.101471 -4.343933 -4.043915 -3.543915 -3.800018 -3.7151184 0 42 -4 -3.9000244 -4.200012 -4 -4.200012 -3.799988 -3.699982 0 43 -4.0516357 -3.934906 -4.220825 -3.995514 -4.046814 -3.790497 -3.693237 0 44 -4 -3.9000244 -4.200012 -4 -4.200012 -3.799988 -3.699982 0 45 -3.2794495 -2.819214 -3.389374 -3.1794434 -3.580109 -3.7099304 -3.059601 0 46 -4 -3.9000244 -4.200012 -4 -4.200012 -3.799988 -3.699982 0 47 -3.997711 -3.896576 -4.197418 -3.997406 -4.198303 -3.799713 -3.6979675 0 48 -3.9819946 -3.8731384 -4.179779 -3.979828 -4.1866455 -3.797394 -3.684387 0 49 -4 -3.9000244 -4.200012 -4 -4.200012 -3.799988 -3.699982 0 50 -3.280426 -2.820679 -3.390503 -3.18042 -3.579895 -3.7100525 -3.060303 0 51 -4 -3.9000244 -4.200012 -4 -4.200012 -3.799988 -3.699982 0 52 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 53 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 54 -3.9972534 -3.8958435 -4.1968994 -3.897217 -3.400696 -3.7996826 -3.5979004 0 55 -3.991791 -3.897888 -4.191803 -3.893799 -3.3959045 -3.800018 -3.60202 0 56 -3.917267 -3.879303 -4.117279 -3.837952 -3.3586426 -3.800018 -3.6206665 0 57 -4 -3.9000244 -4.200012 -4 -4.200012 -3.799988 -3.699982 0 58 -3.771393 -3.5570984 -3.94281 -3.742798 -4.0285645 -3.771423 -3.499939 0 59 -3.2862244 -2.829346 -3.397003 -3.1969604 -3.664673 -3.710785 -3.0754395 0 60 -4.2461243 -4.1931763 -4.3962097 -4.2927246 -3.841919 -3.9460144 -4.0917053 0 61 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 62 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 63 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 64 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 65 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 66 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 67 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 68 -4 -3.8999634 -4.200012 -3.8999634 -3.399994 -3.800018 -3.5999756 0 69 -3.957306 -3.835907 -4.151947 -3.857239 -3.410675 -3.794678 -3.567963 0 70 -3.980072 -3.870056 -4.177582 -3.8800354 -3.404968 -3.797516 -3.585022 0 71 -3.606903 -3.801727 -3.806854 -3.6051636 -3.2034 -3.800018 -3.698273 0 72 -3.825226 -3.856262 -4.0252075 -3.7688904 -3.3125916 -3.800018 -3.643677 0 73 -4.2319336 -4.110138 -4.318817 -4.2937927 -3.878479 -3.8909 -4.255432 0 74 -3.605072 -3.804962 -3.802612 -3.606323 -3.206268 -3.801239 -3.705902 0 75 -3.6000366 -3.800018 -3.800018 -3.6000366 -3.199982 -3.800018 -3.699982 0 76 -3.7690735 -4.138031 -3.799988 -3.8535156 -3.453552 -3.8845215 -3.953522 0 77 -1.8234253 -.5058594 -1.2175903 -1.5176086 -3 -1.9351807 -1.8999634 0 80 -2.3179016 -1.9219055 -2.3058472 -2.411682 -3.415802 -2.182129 -2.826965 0 81 -2.2571716 -1.460205 -1.9925232 -2.1604614 -3.325867 -2.2424927 -2.499512 0 82 -2.291565 -1.728882 -2.183136 -2.3192444 -3.4096375 -2.2277222 -2.719269 0 83 -2.0405273 -1.6405334 -1.9891663 -2.1233826 -3.174744 -1.8206787 -2.609009 0 84 -2.506561 -1.6103516 -2.2598877 -2.3075256 -3.302826 -2.808502 -2.45517 0 85 -2.621765 -1.7913513 -2.432648 -2.439148 -3.3522034 -2.9565735 -2.545654 0 86 -1.8728027 -.6144714 -1.309265 -1.583252 -3.031189 -1.993683 -1.957184 0 87 -3.189789 -2.705078 -3.294922 -3.105072 -3.59491 -3.7203674 -3 0 88 -3 -2.800018 -3.199982 -3.199982 -3.5 -4.0999756 -3 0 89 -3.012146 -2.793945 -3.206055 -3.193909 -3.506073 -4.075653 -3 0 end

Comment